Collecting diverse natural language inference problems for sentence representation evaluation
We present a large-scale collection of diverse natural language inference (NLI) datasets that
help provide insight into how well a sentence representation captures distinct types of …
help provide insight into how well a sentence representation captures distinct types of …
[PDF][PDF] Learning answer-entailing structures for machine comprehension
Understanding open-domain text is one of the primary challenges in NLP. Machine
comprehension evaluates the system's ability to understand text through a series of question …
comprehension evaluates the system's ability to understand text through a series of question …
[PDF][PDF] A Bayesian approach to unsupervised semantic role induction
We introduce two Bayesian models for unsupervised semantic role labeling (SRL) task. The
models treat SRL as clustering of syntactic signatures of arguments with clusters …
models treat SRL as clustering of syntactic signatures of arguments with clusters …
[PDF][PDF] Cross-lingual transfer of semantic role labeling models
Abstract Semantic Role Labeling (SRL) has become one of the standard tasks of natural
language processing and proven useful as a source of information for a number of other …
language processing and proven useful as a source of information for a number of other …
Alignve: Visual entailment recognition based on alignment relations
Visual entailment (VE) is to recognize whether the semantics of a hypothesis text can be
inferred from the given premise image, which is one special task among recent emerged …
inferred from the given premise image, which is one special task among recent emerged …
Annotation of semantic roles for the Turkish proposition bank
In this work, we report large-scale semantic role annotation of arguments in the Turkish
dependency treebank, and present the first comprehensive Turkish semantic role labeling …
dependency treebank, and present the first comprehensive Turkish semantic role labeling …
Arabic textual entailment with word embeddings
Determining the textual entailment between texts is important in many NLP tasks, such as
summarization, question answering, and information extraction and retrieval. Various …
summarization, question answering, and information extraction and retrieval. Various …
Unsupervised induction of semantic roles within a reconstruction-error minimization framework
We introduce a new approach to unsupervised estimation of feature-rich semantic role
labeling models. Our model consists of two components:(1) an encoding component: a …
labeling models. Our model consists of two components:(1) an encoding component: a …
[PDF][PDF] Evaluating the meaning of answers to reading comprehension questions: A semantics-based approach
There is a rise in interest in the evaluation of meaning in real-life applications, eg, for
assessing the content of short answers. The approaches typically use a combination of …
assessing the content of short answers. The approaches typically use a combination of …
Recognizing textual entailment
M Sammons - The Handbook of Contemporary Semantic …, 2015 - Wiley Online Library
This chapter provides an overview of applied research into recognizing textual entailment. It
identifies the fundamental challenges encountered so far, and surveys the models used to …
identifies the fundamental challenges encountered so far, and surveys the models used to …